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Quality assessment of tone-mapped images based on sparse representation

机译:基于稀疏表示的色调映射图像质量评估

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Recently, an increasing number of tone-mapping operators (TMOs) have been proposed in order to display high dynamic range (HDR) images on low dynamic range (LDR) devices. Developing perceptually consistent image quality assessment (QA) measures for TMO is highly desired because traditional LDR based IQA methods cannot support the cross dynamic range quality comparison. In this paper, a novel objective quality assessment method is proposed on the basis of sparse-domain representation, which has been well advocated as a powerful tool in describing natural sparse signals with the over-complete dictionary. Specifically, two indices, incorporating both local and global features extracted from sparsely represented coefficients, are introduced to simulate the human visual system (HVS) characteristics on HDR images. The local feature measures the sparse-domain similarity between the pristine HDR and tone-mapped L R images by leveraging the intrinsic structure with sparse coding. On the other hand, benefiting from the natural scene statistics (NSS), the global features are recovered from the sparse coefficients to account for the natural behaviors of tone-mapped images. Combining the local sparse-domain similarity and the global “naturalness” prior, validations on the public database show that the proposed sparse-domain model for tone-mapped images (SMTI) provides accurate predictions on the human perception of tone-mapped images.
机译:最近,已经提出了越来越多的音调映射运算符(TMO),以便在低动态范围(LDR)设备上显示高动态范围(HDR)图像。由于传统的基于LDR的IQA方法无法支持跨动态范围的质量比较,因此非常需要为TMO开发感知一致的图像质量评估(QA)措施。本文提出了一种新的基于稀疏域表示的客观质量评估方法,该方法已被广泛提倡为用过完备的字典描述自然稀疏信号的有力工具。具体来说,引入了两个指标,它们结合了从稀疏表示的系数中提取的局部和全局特征,以模拟HDR图像上的人类视觉系统(HVS)特性。局部特征通过利用稀疏编码利用固有结构来测量原始HDR和色调映射的L R图像之间的稀疏域相似性。另一方面,得益于自然场景统计(NSS),可以从稀疏系数中恢复全局特征,以说明色调映射图像的自然行为。结合本地稀疏域的相似性和全局的“自然”先验,对公共数据库的验证表明,所提出的用于色调映射图像的稀疏域模型(SMTI)提供了对人类对色调映射图像的感知的准确预测。

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